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Mining Gene Expression Profiles: An Integrated Implementation of Kernel Principal Component Analysis and Singular Value Decomposition

机译:挖掘基因表达谱:核主成分分析和奇异值分解的集成实现

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摘要

The detection of genes that show similar profiles under different experimental conditions is often an initial step in inferring the biological significance of such genes. Visualization tools are used to identify genes with similar profiles in microarray studies. Given the large number of genes recorded in microarray experiments, gene expression data are generally displayed on a low dimensional plot, based on linear methods. However, microarray data show nonlinearity, due to high-order terms of interaction between genes, so alternative approaches, such as kernel methods, may be more appropriate. We introduce a technique that combines kernel principal component analysis (KPCA) and Biplot to visualize gene expression profiles. Our approach relies on the singular value decomposition of the input matrix and incorporates an additional step that involves KPCA. The main properties of our method are the extraction of nonlinear features and the preservation of the input variables (genes) in the output display. We apply this algorithm to colon tumor, leukemia and lymphoma datasets. Our approach reveals the underlying structure of the gene expression profiles and provides a more intuitive understanding of the gene and sample association.
机译:检测在不同实验条件下显示相似特征的基因通常是推断此类基因生物学意义的第一步。可视化工具用于在微阵列研究中鉴定具有相似谱的基因。考虑到微阵列实验中记录的大量基因,通常基于线性方法在低维图上显示基因表达数据。然而,由于基因之间相互作用的高阶术语,微阵列数据显示出非线性,因此替代方法(例如核方法)可能更合适。我们介绍了一种结合内核主成分分析(KPCA)和Biplot来可视化基因表达谱的技术。我们的方法依赖于输入矩阵的奇异值分解,并包含一个涉及KPCA的附加步骤。我们方法的主要特性是提取非线性特征并在输出显示中保留输入变量(基因)。我们将此算法应用于结肠肿瘤,白血病和淋巴瘤数据集。我们的方法揭示了基因表达谱的基础结构,并提供了对基因和样品关联的更直观的理解。

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